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Galaxy surveys: from controlling systematics to new physics Ofer Lahav (UCL) CLASH MACS1206 1
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Outline Which surveys, what science, what methods Systematics: photo-z, star/galaxy separation, biasing Combining imaging and spectroscopy Excess power and primordial non- Gaussianity Neutrino masses Modified gravity 2
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Darkness Visible Cosmic Probes: Gravitational Lensing Peculiar Velocities Galaxy Clusters Cosmic Microwave Background Large Scale Structure Type Ia Supernovae Integrated Sachs-Wolf 3
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What is causing the acceleration of the Universe? The old problem: Theory exceeds observational limits on by 10 120 ! New problems: - Is on the LHS or RHS? - Why are the amounts of Dark Matter and so similar?
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Dark Matter or Modified Gravity? “Dark Matter”: Neptune (discovered 1846)- predicted to be there based on unexplained motion of Uranus. “Modified Gravity”: Mercury’s precession- a new theory (Einstein’s General Relativity, 1917) required to explain it.
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Pre-Supernovae paradigm shift Peebles (1984) advocated Lambda APM result for low matter density (Efstathiou et al. 1990) Baryonic fraction in clusters (White et al. 1993) The case for adding Lambda (Ostriker & Steinhardt 1995) Cf. linear Lambda-like force (Newton 1687 !) Calder & Lahav (2008, 2010)
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The Landscape of Large Surveys (some under construction, some proposed) Photometric surveys: DES, VISTA, VST, Pan-STARRS, HSC, Skymapper, PAU, LSST, … Spetroscopic surveys: WiggleZ, BOSS, e-BOSS, BigBOSS, DESpec, HETDEX, Subaru/Sumire, VISTA/spec, SKA, … Space Missions: Euclid, WFIRST 7
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New Results - BOSS Sanchez et al. 2012 w =-1.03 +- 0.07 8
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The Dark Energy Survey First Light in September 2012 Multi-probe approach Cluster Counts Weak Lensing Large Scale Structure Supernovae Ia 8-band survey 5000 deg 2 grizY 300 million photometric redshifts + JHK from VHS (1200 sq deg covered at half exposure time) +SPT SZ (550 clusters observed over 2500 sq deg) VISTA CTIO 9
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The Dark Energy Survey 10
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DES Science Committee SC Chair: O. Lahav Large Scale Structure: E. Gaztanaga & W. Percival Weak Lensing: S. Bridle & B. Jain Clusters: J. Mohr & C. Miller SN Ia: M. Sako & B. Nichol Photo-z: F. Castander & H. Lin Simulations: G. Evrard & A. Kravtsov Galaxy Evolution: D. Thomas & R. Wechsler QSO: P. Martini & R. McMahon Strong Lensing: L. Buckley-Geer & M. Makler Milky Way: B. Santiago & B. Yanny Theory & Combined Probes: S. Dodelson & J. Weller + Spectroscopic task force: F. Abdalla & A. Kim + Ad-hoc Committees Regular WG telecons; Monthly SC telecons; sessions at collaboration meetings; reports to the DES Director & MC 11
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Spectroscopic follow-up of DES Gaztanaga et al.
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DESpec: Spectroscopic follow up of DES Proposed Dark Energy Spectrometer (DESpec) 4000–fibre instrument for the 4m Blanco telescope in Chile, using DES optics and spare CCDs 7 million galaxy spectra, target list from DES, powerful synergy of imaging and spectroscopy, starting 2017-18 Spectral range approx 600 to 1000nm, R=3300 (red end) DES+DESpec can improve DE FoM by 3-6, making it DETF Stage IV experiment DES+DESpec can distinguish DE from ModGrav Participants: current international DES collaboration + new teams
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DES (WL) + DESpec (LSS) 14 Kirk, Lahav, Bridle et al. (in preparation) Cf. Gaztanaga et al 2012, Bernstein & Cai 2012
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The benefits of same sky DES imaging provides natural target list for DESpec WL & LSS from same sky could constrain better biasing (both r and b), leading to muck higher FoMs (Gaztanaga et al, Cai & Bernstein, Kirk et al, BB- DES report) Reducing cosmic variance (MacDonald& Seljak, Bernstein & Cai)
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EUCLID ESA Cosmic Vision planned launch 2019 The key original ideas: weak lensing from space and photo-z from the ground (DUNE) + spectroscopy (SPACE) The new Euclid: 15000 sq deg 1B galaxy images + 50M spectra (+ground based projects, e.g. PS, DES, LSST,…) 16
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Euclid Forecast
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Sources of Systematics in Cosmology Theoretical (the cosmological model & parameters, e.g. w/out neutrino mass) Astrophysical (e.g. galaxy biasing in LSS, dust in SN, intrinsic alignments in WL) Instrumental (e.g. image quality, photo-z) 18
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Photo-z –Spectra cross talk Approximately, for a photo-z slice: ( w/ w) = 5 ( z/ z) = 5 ( z /z) N s -1/2 => the target accuracy in w and photo-z scatter z dictate the number of required spectroscopic redshifts N s =10 5 -10 6
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PHOTO-Z CODES CODEMETHODREFERENCE HyperZTemplateBolzonella et al. (2000) BPZBayesianBenitez (2000) ANNzTrainingCollister & Lahav (2004) ImpZLiteTemplateBabbedge et al. (2004) SDSS TemplateHybridPadmanabhan et al. (2005) ZEBRAHybrid, BayesianFeldmann et al. (2006) LePhareTemplateIlbert et al. (2006)
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LRG - photo-z code comparison SDSS HpZ+BC Le PHARE Zerba ANNz HpZ+WWC
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Dark Matter => Halos => Galaxies Dark Matter Millenium simulations 2MASS galaxies 22
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How many biasing scenarios? To b or not to b? Local/global bias Linear, deterministic bias Non-linear, stochastic bias Halo bias Luminosity/colour bias Non-Gaussian bias Velocity bias Galaxy/IGM bias Time/scale-dependent bias Eulerian/Lagrangian bias zCosmos 23
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Models of biasing b =1 (Peebles 1980) » gg = b 2 » mm (Kaiser 1984; BBKS 1986) ± g = b ± m (does NOT follow from the previous eq, but used in numerous papers…) ± g = b 0 + b 1 ± m + b 2 ± m 2 +…(since late 90s) Non-linear & Stochastic biasing (Dekel & OL 1999) Halo model (review by Cooray & Sheth 2002) Non-Gaussian imprint ¢ b (k) (Dalal et al. 2008) N-Body, perturbation theory, semi-analytic, hydro simulations etc. 24
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Luminosity bias 25 SDSS DR7 (Zehavi et al. 2011)
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Identifying Non-linear Stochastic Biasing in the Halo Model in the Halo Model Cacciato, Lahav, van den Bosch, Hoekstra, Dekel (2012) 26
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Redshift Distortion as a test of Dark Energy vs. Modified Gravity Guzzo et al. 2008 Blake et al. 2011 ± g (k) = (b + f ¹ 2 ) ± m (k) f = °
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Neutrino mass from galaxy surveys Thomas, Abdalla & Lahav, PRL (2010, 2011) 0.05 eV < Total neutrino mass < 0.28 eV (95% CL) 28
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Neutrino mass from red vs blue SDSS galaxies red blue all upper limit in the range 0.5-1.1 eV red and blue within 1–sigma Swanson, Percival & Lahav (2010) 29
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Neutrino mass from MegaZ-LRG 700,000 galaxies within 3.3 (Gpc/h)^3 Thomas, Abdalla & Lahav (PRL, 2010) 0.05 <Total mass < 0.28 eV (95% CL)
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Imprints of primordial non- Gaussianity on halo bias 31 Dalal et al. 2008 Note: -Guassian initial conditions also generate Non-G (e.g S 3 = 34/7) -Systematics – challenging - Ideally, test for inflation models
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Excess power on Gpc scale: systematics or new physics? Thomas, Abdalla & Lahav (2011) Using MegaZ-LRG (ANNz Photo-z) 32
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Systematics in LSS Star-galaxy separation Galactic extinction Seeing Sky brightness Airmass Calibration offsets Others… 33
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Corrections to angular correlation function Ross et al. 2010 Angular correlation function 34
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Excess power in LRGs DR8? (post stellar correction) 35 Adam Hawken, PhD, in preparation 400 Mpc/h
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The case for “Vanilla systematics” We model the whole universe with 6-12 parameters. How many parameters should we allow as “nuisance parameters” for unknown astrophysics – 10, 100, 1000? Great to have the technical ability to add as many parameters as we like, however... There is some knowledge from theory and simulations on galaxy biasing (and e.g. intrinsic alignments). A small number of physically motivated free parameters are easier for comparison with other analyses. These can be useful to test the1000-parameter setup (or their PCA-compressed version). 36
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Points for discussion How to control systematics? How to handle nuisance parameters? How to uitlize simulations? Could rule out w=-1? Could measure neutrino mass? Could distinguish DE from ModGrav? Could measure PnonG from LSS and CMB? A new paradigm shift? 37
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END 38
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Revised DES Footprint 39
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LSS (DESpec-like) +CMB Synergy With 1% prior (WMAP) on the 150 Mpc sound horizon Hawken, Abdalla, Hutsi, Lahav (arXiv: 1111.2544)
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DESpec: benefits per probe Photo-z/spec: better photo-z calibration (also via cross- correlation) LSS: RSD and radial BAO, FoM improved by several (3-6) Clusters: better redshifts and velocity dispersions, FoM up by several WL: little improvement for FoM (as projected mass), but helps with intrinsic alignments WL+LSS: offers a lot for both DE and for ModGrav SN Ia: spectra of host galaxies and for photo-z training, improving FoM by 2 Galaxy Evolution: galaxy properties and star-formation history Strong Lensing: improved cluster mass models
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DESpec target selection & FoMs 42 Kirk et al, in preparation
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